Forecasting species range dynamics with process-explicit models: matching methods to applications.
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Jane Elith | Brendan A. Wintle | Tracey J Regan | Brendan A Wintle | Natalie J Briscoe | Roberto Salguero-Gómez | José J Lahoz-Monfort | James S Camac | Katherine M Giljohann | Matthew H Holden | Bronwyn A Hradsky | Michael R Kearney | Sean M McMahon | Ben L Phillips | Jonathan R Rhodes | Peter A Vesk | Jian D L Yen | Gurutzeta Guillera-Arroita | J. Elith | M. Kearney | G. Guillera‐Arroita | J. Lahoz‐Monfort | T. Regan | B. Wintle | S. McMahon | M. Holden | R. Salguero‐Gómez | P. Vesk | J. Rhodes | N. J. Briscoe | J. Yen | B. Phillips | James S. Camac | K. Giljohann | B. Hradsky | J. Camac
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